The task of Visual Place Recognition (VPR) aims to match a query image against references from an extensive database of images from different places, relying solely on visual cues. State-of-the-art pipelines focus on the aggregation of features extracted from a deep backbone, in order to form a global descriptor for each image. In this context, we introduce SALAD (Sinkhorn Algorithm for Locally Aggregated Descriptors), which reformulates NetVLAD's soft-assignment of local features to clusters as an optimal transport problem. In SALAD, we consider both feature-to-cluster and cluster-to-feature relations and we also introduce a 'dustbin' cluster, designed to selectively discard features deemed non-informative, enhancing the overall descriptor quality. Additionally, we leverage and fine-tune DINOv2 as a backbone, which provides enhanced description power for the local features, and dramatically reduces the required training time. As a result, our single-stage method not only surpasses single-stage baselines in public VPR datasets, but also surpasses two-stage methods that add a re-ranking with significantly higher cost. Code and models are available at https://github.com/serizba/salad.
Optimal Transport Aggregation for Visual Place Recognition
SALAD, an optimal transport-based approach for VPR, enhances descriptor quality by selectively discarding non-informative features and leveraging fine-tuned DINOv2, surpassing both single-stage and two-stage baselines.
- Year
- 2023
- Venue
- CVPR 2024 1
- Authors
- 2
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- arxiv.org/abs/2311.15937v2ARXIV-DEFAULT
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